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GLAD: A Method of Microgrid Anomaly Detection Based on ESD in Smart Power Grid

机译:GLAD:一种基于ESD的智能电网微电网异常检测方法

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A microgrid is defined as a group of interconnected loads and distributed energy resources, that the electrical loads fluctuate with respect to the grid. When focusing on load anomaly in microgrid, different from the traditional centralized grid (macrogrid), a method of microgrid anomaly detection based on the extreme studentized deviate(ESD) test, is proposed as GLAD (grid load anomaly detection). GLAD under the enhanced ESD is adapted to solve this problem properly, using the detect_ts function of PyCuliarity library to carry out anomaly detection simulation experiment in Python software, according to a series of statistical analysis. In the paper, the existing time series and anomaly detection methods are firstly analyzed and summarized, then GLAD are designed to detect the grid load variations. Some conventional anomaly detection methods are also discussed for higher efficiency of GLAD. Moreover, there are still better methods for anomaly detection of microgrid, Finally, GLAD with machine learning modeling is discussed for the future smartgrids of anomaly detection in distributed energy resources.
机译:微电网被定义为一组相互连接的负载和分布式能源,电负载相对于电网波动。当关注微电网中的负荷异常时,与传统的集中式电网(macrogrid)不同,提出了一种基于极端学生偏差(ESD)测试的微电网异常检测方法,称为GLAD(电网负荷异常检测)。根据一系列统计分析,使用增强型ESD的GLAD可以正确解决此问题,它使用PyCuliarity库的detect_ts函数在Python软件中进行异常检测模拟实验。本文首先对现有的时间序列和异常检测方法进行了分析和总结,然后设计了GLAD来检测电网负荷变化。为了提高GLAD的效率,还讨论了一些常规的异常检测方法。此外,仍然存在更好的微电网异常检测方法。最后,针对未来分布式能源资源中异常检测的智能电网,讨论了带有机器学习模型的GLAD。

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